Erasure Coded Neural Network Inference via Fisher Averaging
Divyansh Jhunjhunwala, Neharika Jali, et al.
ISIT 2024
Inferring semantic types for entity mentions within text documents is an important asset for many downstream NLP tasks, such as Semantic Role Labelling, Entity Disambiguation, Knowledge Base Question Answering, etc. Prior works have mostly focused on supervised solutions that generally operate on relatively small-to-medium-sized type systems. In this work, we describe two systems aimed at predicting type information for the following two tasks, namely, a TypeSuggest module, an unsupervised system designed to predict types for a set of user-entered query terms, and an Answer Type prediction module, that provides a solution for the task of determining the correct type of the answer expected to a given query. Our systems generalize to arbitrary type systems of any sizes, thereby making it a highly appealing solution to extract type information at any granularity.
Divyansh Jhunjhunwala, Neharika Jali, et al.
ISIT 2024
Paulo Rodrigo Cavalin, Pedro Henrique Leite Da Silva Pires Domingues, et al.
ACL 2023
Dian Balta, Mahdi Sellami, et al.
ePart 2021
Shubhi Asthana, Pawan Chowdhary, et al.
KDD 2021